10 NVIDIA Free AI Courses to Get You Started 2024

0
262
Advertisement

The world of Artificial Intelligence (AI) is rapidly evolving, and the demand for skilled individuals is soaring. But where do you even begin? Fear not, aspiring AI enthusiast! NVIDIA Free AI Courses offer a fantastic solution.

Also, Read: Online Free ISRO Course on Principles of Geographic Information Systems Apply Now! 2024

Advertisement
10 NVIDIA Free AI Courses to Get You Started 2024

Also, Read: 7 Productivity Hacks: How Microsoft Copilot AI Supercharges Your Workflow

About the NVIDIA

Nvidia Corporation is an American multinational corporation and technology company headquartered in Santa Clara, California, and incorporated in Delaware. It is a software and fabless company that designs and supplies graphics processing units (GPUs), application programming interfaces (APIs) for data science and high-performance computing as well as system-on-a-chip units (SoCs) for the mobile computing and automotive market. Nvidia is also a dominant supplier of artificial intelligence (AI) hardware and software.

Nvidia professional line of GPUs is used for edge-to-cloud computing and in supercomputers and workstations for applications in such fields as architecture, engineering and construction, media and entertainment, automotive, scientific research, and manufacturing design. Its GeForce line of GPUs is aimed at the consumer market and is used in applications such as video editing, 3D rendering and PC gaming. In the second quarter of 2023, Nvidia had a market share of 80.2% in the discrete desktop GPU market.

The company expanded its presence in the gaming industry with the introduction of the Shield Portable (a handheld game console), Shield Tablet (a gaming tablet) and Shield TV (a digital media player), as well as its cloud gaming service GeForce Now

Here Are 10 NVIDIA Free AI Courses

1. Generative AI Explained

The principles of generative AI are introduced in this free, self-paced online course. Generative AI is the process of producing new information depending on various inputs. Participants will gain an understanding of the ideas, uses, difficulties, and future possibilities of generative AI through this course.

Learning objectives cover generative AI’s definition and operation, a summary of its various applications, and a discussion of the opportunities and challenges that come with it. To take part, all you need to know is the fundamentals of deep learning and machine learning.

Course Link Click Here

2. Digital Fingerprinting with Morpheus

In just one hour, participants will learn how to create and implement the NVIDIA digital fingerprinting AI workflow, which offers total data visibility and drastically cuts down on the amount of time needed to detect threats.

The NVIDIA Morpheus AI Framework, which is intended to speed up GPU-based AI applications for filtering, processing, and categorizing massive amounts of streaming cybersecurity data, will be made practical for participants to use.

They will also be introduced to the NVIDIA Triton Inference Server, an open-source program that enables the uniform deployment and operation of AI models across a range of workloads. Although knowledge of the Linux command line and defensive cybersecurity concepts is helpful, there are no prerequisites for this lesson.

Course Link Click Here

3. Building A Brain in 10 Minutes

This course explores the fundamentals of neural networks using concepts from psychology and biology. Understanding how neural networks use input for learning and the mathematical concepts that underpin a neuron’s operation are its two main goals.

Although anyone can run the provided code and watch its activities, it is recommended to have a firm understanding of basic Python 3 programming principles, such as functions, loops, dictionaries, and arrays. It’s also advised to be knowledgeable with computing regression lines.

Course Link Click Here

4. Building RAG Agents with LLMs

The ability of retrieval-based LLM systems to analyze documents, plan strategically, use tools, and hold educated conversations has made them popular. The deployment of agent systems and scaling them to satisfy user and client demands are the main topics of this course.

The main learning goals include investigating scalable deployment techniques for vector databases and LLMs, comprehending microservices and their interactions, and experimenting with modern LangChain paradigms for document retrieval and dialogue management. Moreover, you can learn about productionalization and framework exploration while gaining hands-on experience with cutting-edge models.

This is great if you know your way around LLMs and related composition frameworks like LangChain and you know Python at an intermediate level.

Course Link Click Here

Also, Read: Top 6 Best Free MIT Courses You Can Take Online Enroll Now in 2024

Also, Read : Top 9 Free Finance Internships in India For College Students Apply Now 2024

5. Augment your LLM Using RAG

Facebook AI Research developed Retrieval Augmented Generation (RAG) in 2020 as a way to improve an LLM output without requiring model retraining by integrating real-time, domain-specific data. RAG creates an end-to-end architecture by integrating a response generator and an information retrieval module.

This introduction attempts to give a basic knowledge of RAG, including its retrieval process and the key elements inside NVIDIA’s AI Foundations framework, by drawing on NVIDIA’s internal practices. Once you have a firm grasp on these principles, you can begin researching LLM and RAG applications.

Course Link Click Here

6. Building Video AI Applications at the Edge on Jetson Nano

The goal of this self-paced online course is to give students the tools they need to understand videos using AI utilizing the NVIDIA Jetson Nano Developer Kit. Using the NVIDIA DeepStream SDK, participants will investigate intelligent video analytics (IVA) applications through hands-on exercises and Python application samples in JupyterLab notebooks.

The Jetson Nano setup, building end-to-end DeepStream pipelines for video analysis, including different input and output sources, configuring multiple video streams, and using alternative inference engines such as YOLO are all covered in this course.

Basic knowledge of the Linux command line and comprehension of Python 3 programming fundamentals are prerequisites. The course requires specific hardware, such as the Jetson Nano Developer Kit, and makes use of technologies like TensorRT and DeepStream. Multiple-choice questions are used for assessment, and when finished, a certificate is given out.

For this course, you will require hardware including the NVIDIA Jetson Nano Developer Kit or the 2GB version, along with compatible power supply, microSD card, USB data cable, and a USB webcam.

Course Link Click Here

7. How to Build Custom 3D Scene Manipulator Tools on NVIDIA Omniverse

This course provides useful advice on how to use the flexible Omniverse platform to extend and improve 3D tools. Participants will learn how to construct advanced tools for generating physically correct virtual environments from the Omniverse developer ecosystem team.

Learners will delve into Python code to create new scene manipulator tools within Omniverse through self-paced assignments. Launching Omniverse Code, installing and enabling extensions, traversing the USD stage hierarchy, and building scale-controlling widget manipulators are among the main learning goals.

In addition, the training covers creating specialized scale manipulators and repairing malfunctioning manipulators. The Python Extension, Visual Studio Code, and Omniverse Code are necessary tools. The minimal system specifications include a desktop or laptop computer with an AMD Ryzen or Intel i7 Gen 5 processor and an NVIDIA RTX Enabled GPU with 16GB of memory.

Course Link Click Here

8. Assemble a Simple Robot in Isaac Sim

This course provides a hands-on lesson for putting together a basic mobile robot with two wheels using the Isaac Sim GPU platform’s “Assemble a Simple Robot” guide. Throughout the course of the 30-minute lesson, important topics are covered, including setting up joint drives and properties for the robot’s mobility, importing a USD dummy robot into the simulation environment, and connecting a local streaming client to an Omniverse Isaac Sim server.

Participants will also learn how to give the robot more articulation. Participants will be more comfortable with the Isaac Sim interface and the documentation needed to start their own robot simulation projects by the end of the course.

A Windows or Linux computer with sufficient internet access and the ability to install Omniverse Launcher and programs are requirements for this course.

Course Link Click Here

9. Disaster Risk Monitoring Using Satellite Imagery

The course, which was developed in partnership with the United Nations Satellite Centre, teaches participants how to develop and apply deep learning models for automated flood detection with a focus on disaster risk monitoring using satellite data. The acquired competencies are intended to lower expenses, boost productivity, and raise the efficacy of disaster relief initiatives.

The course will cover how to implement a machine learning workflow, use hardware-accelerated tools to handle massive amounts of satellite imagery data, and use transfer learning to create deep learning models at a reasonable cost.

The course also addresses the use of deep learning-based inference for flood event identification and response, as well as the deployment of models for analysis in close to real-time. Proficiency in Python 3, a fundamental comprehension of machine learning and deep learning principles, and an enthusiasm for manipulating satellite photos are prerequisites.

Course Link Click Here

Also, Read: Top 3 Best Free AI and ChatGPT courses you can take online

Also, Read: This Art School In Jharkhand Provides Free Spoken English Courses 2024

10. Introduction to AI in the Data Center

This course will cover the architecture and background of GPUs as well as AI application cases, machine learning, and deep learning procedures. The course also addresses deployment issues for AI workloads in data centers, including multi-system clusters and infrastructure design, in an approachable style for beginners.

Professionals in data centers, DevOps, system and network administrators, and IT are the target audience for this course.

Course Link Click Here

For More Update Join My Telegram Channel Click Here

LEAVE A REPLY

Please enter your comment!
Please enter your name here
Captcha verification failed!
CAPTCHA user score failed. Please contact us!